基于噪声标签细化的网络监督图像文本嵌入

Niluthpol Chowdhury Mithun, Ravdeep Pasricha, E. Papalexakis, A. Roy-Chowdhury
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引用次数: 0

摘要

在本文中,我们解决了利用web图像训练鲁棒联合嵌入模型用于图像-文本检索任务的问题。先前的网络监督方法直接利用联合嵌入学习框架中的弱注释网络图像。当与web图像相关的噪声和缺失标签的比例非常高时,这些方法的目标将受到严重影响。在这方面,我们提出了一个基于CP分解的张量补全框架,通过将观察到的标记图像、标签和web图像之间的三元相互关系建模为一个张量,来改进web图像的标签。为了有效地处理在我们的案例中可能出现的高缺失条目比例,我们将模态内相关性作为提议框架中的侧信息。我们的标签细化方法与现有的web监督图像-文本嵌入方法相结合,提供了一种更有原则的方法,用于在web数据存在明显噪声和有限的干净标记数据的情况下学习联合嵌入模型。在基准数据集上的实验表明,该方法有助于在图像文本检索中获得显着的性能提升。
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Webly Supervised Image-Text Embedding with Noisy Tag Refinement
In this paper, we address the problem of utilizing web images in training robust joint embedding models for the image-text retrieval task. Prior webly supervised approaches directly leverage weakly annotated web images in the joint embedding learning framework. The objective of these approaches would suffer significantly when the ratio of noisy and missing tags associated with the web images is very high. In this regard, we propose a CP decomposition based tensor completion framework to refine the tags of web images by modeling observed ternary inter-relations between the sets of labeled images, tags, and web images as a tensor. To effectively deal with the high ratio of missing entries likely in our case, we incorporate intra-modal correlation as side information in the proposed framework. Our tag refinement approach combined with existing web supervised image-text embedding approaches provide a more principled way for learning the joint embedding models in the presence of significant noise from web data and limited clean labeled data. Experiments on benchmark datasets demonstrate that the proposed approach helps to achieve a significant performance gain in image-text retrieval.
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